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Programming tumor evolution with selection gene drives to proactively combat drug resistance.

Scott M LeighowJoshua A ReynoldsIvan SokirniyShun YaoZeyu YangHaider InamDominik WodarzMarco ArchettiJustin R Pritchard
Published in: Nature biotechnology (2024)
Most targeted anticancer therapies fail due to drug resistance evolution. Here we show that tumor evolution can be reproducibly redirected to engineer therapeutic opportunity, regardless of the exact ensemble of pre-existing genetic heterogeneity. We develop a selection gene drive system that is stably introduced into cancer cells and is composed of two genes, or switches, that couple an inducible fitness advantage with a shared fitness cost. Using stochastic models of evolutionary dynamics, we identify the design criteria for selection gene drives. We then build prototypes that harness the selective pressure of multiple approved tyrosine kinase inhibitors and employ therapeutic mechanisms as diverse as prodrug catalysis and immune activity induction. We show that selection gene drives can eradicate diverse forms of genetic resistance in vitro. Finally, we demonstrate that model-informed switch engagement effectively targets pre-existing resistance in mouse models of solid tumors. These results establish selection gene drives as a powerful framework for evolution-guided anticancer therapy.
Keyphrases
  • genome wide
  • copy number
  • genome wide identification
  • dna methylation
  • physical activity
  • mouse model
  • stem cells
  • cancer therapy
  • machine learning
  • cell therapy
  • convolutional neural network
  • drug administration